
Static orchestration is the silent killer of multi-agent RAG systems.
The query changes, but the agent topology stays the same.
The work introduces HERA, a framework that jointly evolves multi-agent orchestration and role-specific agent prompts.
At the global level, it optimizes query-specific agent topologies through reward-guided sampling.
At the local level, it refines individual agent behaviors via credit assignment and dual-axes prompt adaptation.
On six knowledge-intensive benchmarks, HERA achieves an average improvement of 38.69% over recent baselines.
Why does it matter?
As multi-agent RAG systems scale, the gap between fixed pipelines and adaptive orchestration will only grow.
HERA shows that letting the system learn its own coordination structure produces compact, high-utility agent networks.
Paper: arxiv.org/abs/2604.00901
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